Abstract Background Associative Classification, a combination of two important and different fields (classification and association rule mining), aims at building accurate and interpretable classifiers by means of association rules. A major problem in this field is that existing proposals do not scale well when Big Data are considered. In this regard, the aim of this work is to propose adaptations of well-known associative classification algorithms (CBA and CPAR) by considering different Big Data platforms (Spark and Flink). Results An experimental study has been performed on 40 datasets (30 classical datasets and 10 Big Data datasets). Classical data have been used to find which algorithms perform better sequentially. Big Data dataset have...
One of the four basic machine learning tasks is pattern classification. The selection of the proper ...
Classification based on association rule mining, also known as associative classification, is a prom...
This paper discusses the application of machine learning classification problems for big data analys...
Associative classifiers have proven to be very effective in classification problems. Unfortunately, ...
Associative classification (AC) is a data mining approach that combines association rule and classif...
Supervised learning algorithms are nowadays successfully scaling up to datasets that are very large ...
Associative classification is a new classification approach integrating association mining and class...
Associative classification is a promising approach that utilises association rule mining to build cl...
ABSTRACT: Association rule discovery and classification are common data mining tasks. Integrating as...
Associative classification mining is a promising approach in data mining that utilizes the associat...
The purpose of the work is to explore the current problems and prospects of mining solution, big web...
Associative classification is a branch in data mining that employs association rule discovery method...
Big Data frameworks allow powerful distributed computations extending the results achievable on a si...
Traditional classification techniques such as decision trees and RIPPER use heuristic search methods...
Association rule discovery and classification are common data mining tasks. Integrating association ...
One of the four basic machine learning tasks is pattern classification. The selection of the proper ...
Classification based on association rule mining, also known as associative classification, is a prom...
This paper discusses the application of machine learning classification problems for big data analys...
Associative classifiers have proven to be very effective in classification problems. Unfortunately, ...
Associative classification (AC) is a data mining approach that combines association rule and classif...
Supervised learning algorithms are nowadays successfully scaling up to datasets that are very large ...
Associative classification is a new classification approach integrating association mining and class...
Associative classification is a promising approach that utilises association rule mining to build cl...
ABSTRACT: Association rule discovery and classification are common data mining tasks. Integrating as...
Associative classification mining is a promising approach in data mining that utilizes the associat...
The purpose of the work is to explore the current problems and prospects of mining solution, big web...
Associative classification is a branch in data mining that employs association rule discovery method...
Big Data frameworks allow powerful distributed computations extending the results achievable on a si...
Traditional classification techniques such as decision trees and RIPPER use heuristic search methods...
Association rule discovery and classification are common data mining tasks. Integrating association ...
One of the four basic machine learning tasks is pattern classification. The selection of the proper ...
Classification based on association rule mining, also known as associative classification, is a prom...
This paper discusses the application of machine learning classification problems for big data analys...